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一种基于广义相加模型(GAM)贝塔回归模型的新冠疫情指数及其在意大利新冠疫情中的应用。

A COVINDEX based on a GAM beta regression model with an application to the COVID-19 pandemic in Italy.

作者信息

Scrucca Luca

机构信息

Dipartimento di Economia, Università degli Studi di Perugia, Perugia, Italy.

出版信息

Stat Methods Appt. 2022;31(4):881-900. doi: 10.1007/s10260-021-00617-y. Epub 2022 Jan 10.

Abstract

Detecting changes in COVID-19 disease transmission over time is a key indicator of epidemic growth. Near real-time monitoring of the pandemic growth is crucial for policy makers and public health officials who need to make informed decisions about whether to enforce lockdowns or allow certain activities. The effective reproduction number is the standard index used in many countries for this goal. However, it is known that due to the delays between infection and case registration, its use for decision making is somewhat limited. In this paper a near real-time COVINDEX is proposed for monitoring the evolution of the pandemic. The index is computed from predictions obtained from a GAM beta regression for modelling the test positive rate as a function of time. The proposal is illustrated using data on COVID-19 pandemic in Italy and compared with . A simple chart is also proposed for monitoring local and national outbreaks by policy makers and public health officials.

摘要

检测新冠病毒疾病传播随时间的变化是疫情增长的关键指标。对疫情增长进行近实时监测对于需要就是否实施封锁或允许某些活动做出明智决策的政策制定者和公共卫生官员至关重要。有效再生数是许多国家为此目的使用的标准指标。然而,众所周知,由于感染与病例登记之间存在延迟,其用于决策的作用在一定程度上受到限制。本文提出了一种近实时的COVINDEX用于监测疫情的演变。该指数是根据从广义相加模型(GAM)贝塔回归获得的预测计算得出的,该回归用于将检测阳性率建模为时间的函数。使用意大利新冠疫情的数据对该提议进行了说明,并与……进行了比较。还为政策制定者和公共卫生官员提出了一个简单的图表,用于监测地方和全国性疫情爆发情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b6e7/8743080/9e928142210a/10260_2021_617_Fig1_HTML.jpg

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